# min(DALL·E) [![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/kuprel/min-dalle/blob/main/min_dalle.ipynb)   [![Replicate](https://replicate.com/kuprel/min-dalle/badge)](https://replicate.com/kuprel/min-dalle) This is a minimal implementation of Boris Dayma's [DALL·E Mini](https://github.com/borisdayma/dalle-mini) in PyTorch. It has been stripped to the bare essentials necessary for doing inference. The only third party dependencies are numpy and torch. It currently takes **7.4 seconds** to generate an image with DALL·E Mega with PyTorch on a standard GPU runtime in Colab The flax model, and the code for coverting it to torch, have been moved [here](https://github.com/kuprel/min-dalle-flax). ### Install ```bash $ pip install min-dalle ``` ### Usage Use the python script `image_from_text.py` to generate images from the command line. ```bash $ python image_from_text.py --text='artificial intelligence' --seed=7 ``` ![Artificial Intelligence](examples/artificial_intelligence.png) ```bash $ python image_from_text.py --text='court sketch of godzilla on trial' --mega ``` ![Godzilla Trial](examples/godzilla_on_trial.png) To load a model once and generate multiple times, first initialize `MinDalleTorch` ```python from min_dalle import MinDalleTorch model = MinDalleTorch( is_mega=True, is_reusable=True, models_root='./pretrained' ) ``` The required models will be downloaded to `models_root` if they are not already there. After the model has loaded, call `generate_image` with some text and a seed as many times as you want. ```python image = model.generate_image("a comfy chair that looks like an avocado") display(image) ``` ![Avocado Armchair](examples/avocado_armchair.png) ```python image = model.generate_image( "trail cam footage of gollum eating watermelon", seed=1 ) display(image) ``` ![Gollum Trailcam](examples/gollum_trailcam.png)